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Multi-objective simulation optimization for complex urban mass rapid transit systems

机译:复杂城市大众快速交通系统多目标仿真优化

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摘要

In this paper, we present a multi-objective simulation-based headway optimization for complex urban mass rapid transit systems. Real-world applications often confront conflicting goals of cost versus service level. We propose a two-phase algorithm that combines the single-objective covariance matrix adaptation evolution strategy with a problem-specific multi-directional local search. With a computational study, we compare our proposed method against both a multi-objective covariance matrix adaptation evolution strategy and a non-dominated sorting genetic algorithm. The integrated discrete event simulation model has several stochastic elements. Fluctuating demand (i.e., creation of passengers) is driven by hourly origin-destination-matrices based on mobile phone and infrared count data. We also consider the passenger distribution along waiting platforms and within vehicles. Our two-phase optimization scheme outperforms the comparative approaches, in terms of both spread and the accuracy of the resulting Pareto front approximation.
机译:在本文中,我们为复杂的城市批量快速交通系统提供了一种基于多目标仿真的头部优化。现实世界应用程序经常面对成本与服务水平的相互冲突。我们提出了一种两阶段算法,将单个客观协方差矩阵自适应演化策略与特定于问题的多向本地搜索相结合。通过计算研究,我们将我们提出的方法与多目标协方差矩阵适应演化策略和非主导的分类遗传算法进行比较。集成的离散事件仿真模型具有多个随机元素。波动的需求(即,乘客的创建)由每小时起始目的地 - 基于移动电话和红外数计数数据驱动。我们还考虑等候平台和车辆内的乘客分销。我们的两相优化方案在传播和所得帕累托前近似的准确性方面优于比较方法。

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